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A cosine maximization method for the priority vector derivation in AHP ☆

机译:层次分析法中优先向量推导的余弦最大化方法

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摘要

The derivation of a priority vector from a pair-wise comparison matrix (PCM) is an important issue in the Analytic Hierarchy Process (AHP). The existing methods for the priority vector derivation from PCM include eigenvector method (EV), weighted least squares method (WLS), additive normalization method (AN), logarithmic least squares method (LLS), etc. The derived priority vector should be as similar to each column vector of the PCM as possible if a pair-wise comparison matrix (PCM) is not perfectly consistent. Therefore, a cosine maximization method (CM) based on similarity measure is proposed, which maximizes the sum of the cosine of the angle between the priority vector and each column vector of a PCM. An optimization model for the CM is proposed to derive the reliable priority vector. Using three numerical examples, the CM is compared with the other prioritization methods based on two performance evaluation criteria: Euclidean distance and minimum violation. The results show that the CM is flexible and efficient.
机译:从成对比较矩阵(PCM)导出优先级向量是分析层次过程(AHP)中的重要问题。从PCM导出优先级向量的现有方法包括特征向量法(EV),加权最小二乘法(WLS),加法归一化方法(AN),对数最小二乘法(LLS)等。导出的优先级向量应类似如果成对比较矩阵(PCM)并非完全一致,则应尽可能地将PCM设置为PCM的每个列向量。因此,提出了一种基于相似度度量的余弦最大化方法(CM),该方法最大化了优先级矢量和PCM的每个列矢量之间的角度的余弦和。提出了一种用于CM的优化模型,以导出可靠的优先级向量。使用三个数值示例,将CM与基于两个性能评估标准的其他优先级排序方法进行比较:欧式距离和最小违规。结果表明,CM灵活高效。

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